In this paper, a new three-dimensional path planning approach with obstacle avoidance for UAVs is proposed. The aim is to provide a computationally-fast on-board sub-optimal solution for collision- free path planning in static environments. The optimal 3D path is an NP (non-deterministic polynomial-time) hard problem which may be solved numerically by global optimization algorithms such as the Particle Swarm Optimization (PSO). Application of PSO to the 3D path plan- ning class of problems faces typical challenges such slow convergence rate. It is shown that the performance may be improved markedly by imple- menting a novel parallel approach and incorporation of new termination conditions. Moreover, the exploration and exploitation parameters are optimized to nd a reasonably short, smooth, and safe path connecting the way-points. As an additional precaution to avoid collisions, obstacle dimensions are artificially slightly enlarged. To verify the robustness of the algorithm, several simulations are carried out by varying the num- ber of obstacles, their volume, and location in space. A certain number of simulations exploiting the random nature of PSO are performed to highlight the computational efficiency and the robustness of this new approach.

A 3D Path Planning Algorithm based on PSO for Autonomous UAVs Navigation: 9th International Conference, BIOMA 2020, Brussels, Belgium, November 19–20, 2020, Proceedings / Mirshamsi, Alireza; Godio, Simone; Nobakhti, Amin; Primatesta, Stefano; Dovis, Fabio; Guglieri, Giorgio (THEORETICAL COMPUTER SCIENCE AND GENERAL ISSUES). - In: Bioinspired Optimization Methods and Their Applications / Mirshamsi A., Godio S., Nobakhti A., Primatesta S. , Dovis F, and Guglieri G.. - ELETTRONICO. - [s.l] : Springer, 2020. - ISBN 978-3-030-63709-5. [10.1007/978-3-030-63710-1]

A 3D Path Planning Algorithm based on PSO for Autonomous UAVs Navigation: 9th International Conference, BIOMA 2020, Brussels, Belgium, November 19–20, 2020, Proceedings

Godio,Simone;Primatesta, Stefano;Dovis Fabio;Guglieri Giorgio
2020

Abstract

In this paper, a new three-dimensional path planning approach with obstacle avoidance for UAVs is proposed. The aim is to provide a computationally-fast on-board sub-optimal solution for collision- free path planning in static environments. The optimal 3D path is an NP (non-deterministic polynomial-time) hard problem which may be solved numerically by global optimization algorithms such as the Particle Swarm Optimization (PSO). Application of PSO to the 3D path plan- ning class of problems faces typical challenges such slow convergence rate. It is shown that the performance may be improved markedly by imple- menting a novel parallel approach and incorporation of new termination conditions. Moreover, the exploration and exploitation parameters are optimized to nd a reasonably short, smooth, and safe path connecting the way-points. As an additional precaution to avoid collisions, obstacle dimensions are artificially slightly enlarged. To verify the robustness of the algorithm, several simulations are carried out by varying the num- ber of obstacles, their volume, and location in space. A certain number of simulations exploiting the random nature of PSO are performed to highlight the computational efficiency and the robustness of this new approach.
2020
978-3-030-63709-5
Bioinspired Optimization Methods and Their Applications
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11583/2850165